Skip to Content
  • Offices

    Offices

    North & Latin America
    • Atlanta
    • Austin
    • Bogota
    • Boston
    • Buenos Aires
    • Chicago
    • Dallas
    • Denver
    • Houston
    • Los Angeles
    • Mexico City
    • Minneapolis
    • Monterrey
    • Montreal
    • New York
    • Rio de Janeiro
    • San Francisco
    • Santiago
    • São Paulo
    • Seattle
    • Silicon Valley
    • Toronto
    • Washington, DC
    Europe & Africa
    • Amsterdam
    • Athens
    • Berlin
    • Brussels
    • Copenhagen
    • Dusseldorf
    • Frankfurt
    • Helsinki
    • Istanbul
    • Johannesburg
    • Kyiv
    • Lisbon
    • London
    • Madrid
    • Milan
    • Munich
    • Oslo
    • Paris
    • Rome
    • Stockholm
    • Vienna
    • Warsaw
    • Zurich
    Middle East
    • Doha
    • Dubai
    • Riyadh
    Asia & Australia
    • Bangkok
    • Beijing
    • Bengaluru
    • Brisbane
    • Ho Chi Minh City
    • Hong Kong
    • Jakarta
    • Kuala Lumpur
    • Manila
    • Melbourne
    • Mumbai
    • New Delhi
    • Perth
    • Shanghai
    • Singapore
    • Sydney
    • Tokyo
    See all offices
  • Alumni
  • Media Center
  • Subscribe
  • Contact
  • Spain | Español

    Select your region and language

    Global
    • Global (English)
    North & Latin America
    • Brazil (Português)
    • Argentina (Español)
    • Canada (Français)
    • Chile (Español)
    • Colombia (Español)
    Europe, Middle East, & Africa
    • France (Français)
    • DACH Region (Deutsch)
    • Italy (Italiano)
    • Spain (Español)
    • Greece (Elliniká)
    Asia & Australia
    • China (中文版)
    • Korea (한국어)
    • Japan (日本語)
  • Saved items (0)
    Saved items (0)

    You have no saved items.

    Bookmark content that interests you and it will be saved here for you to read or share later.

    Explore Bain Insights
  • Industries
    Main menu

    Industries

    • Aeroespacial y Defensa
    • Agroindustria
    • Químicos
    • Construcción e Infraestructura
    • Productos de Consumo
    • Servicios Financieros
    • Salud y Ciencias de la Vida
    • Maquinaria y Equipo Industrial
    • Medios y Entretenimiento
      Industries
      Medios y Entretenimiento
      • Media Lab
    • Metales
    • Minería
    • Petróleo y Gas
    • Papel y Empaque
    • Private Equity
      Industries
      Private Equity
      • Due Diligence
      • Exit Planning
      • Firm Strategy & Operations
      • Portfolio Value Creation
    • Sector Público y Social
    • Retail
    • Tecnología
    • Telecomunicaciones
      Industries
      Telecomunicaciones
      • Capital Expenditure
      • Telco Digital Transformation
    • Transporte
    • Viajes y Turismo
    • Servicios Públicos y Energías Renovables
  • Consulting Services
    Main menu

    Consulting Services

    • Customer Experience
    • Sustainability
    • Innovation
    • M&A
    • Operations
    • People & Organization
    • Private Equity
    • Sales & Marketing
    • Strategy
    • AI, Insights, and Solutions
    • Technology
    • Transformation
  • Digital
  • Insights
    Main menu

    Insights

    • Industry Insights
    • Services Insights
    • Bain Books
    • Webinars
    • Bain Futures
    View all Insights
    Featured topics
    • Tariff Response
    • Artificial Intelligence
    • Thriving in Uncertainty
    • Executive Conversations
    • Macro Trends
    • M&A Report
    • Healthcare Private Equity Report
    • Paper & Packaging Report
    • Technology Report
    • CEO's Guide to Sustainability
    • CEO Insights
    • CFO Insights
    • COO Insights
    • CIO Insights
    • CMO Insights
    View all featured topics
  • About
    Main menu

    About

    • What We Do
    • What We Believe
    • Our People & Leadership
    • Client Results
    • Awards & Recognition
    • Global Affiliations
    Further: Our global responsibility
    • Sustainability
    • Social Impact
    • World Economic Forum
    Learn more about Further
  • Carreras
    Main menu

    Carreras

    • Trabaja con Nosotros
      Carreras
      Trabaja con Nosotros
      • Find Your Place
      • Nuestras Áreas de Trabajo
      • Equipos Integrados
      • Estudiantes
      • Internships & Programs
      • Eventos de Reclutamiento
    • La Vida en Bain
      Carreras
      La Vida en Bain
      • Historias Profesionales
      • Nuestra Gente
      • Dónde Trabajamos
      • Apoyando tu Crecimiento
      • Grupos de Afinidad
      • Beneficios
    • Impact Stories
    • Nuestro Proceso
      Carreras
      Nuestro Proceso
      • Qué Esperar
      • Entrevistas
    FIND JOBS
  • Offices
    Main menu

    Offices

    • North & Latin America
      Offices
      North & Latin America
      • Atlanta
      • Austin
      • Bogota
      • Boston
      • Buenos Aires
      • Chicago
      • Dallas
      • Denver
      • Houston
      • Los Angeles
      • Mexico City
      • Minneapolis
      • Monterrey
      • Montreal
      • New York
      • Rio de Janeiro
      • San Francisco
      • Santiago
      • São Paulo
      • Seattle
      • Silicon Valley
      • Toronto
      • Washington, DC
    • Europe & Africa
      Offices
      Europe & Africa
      • Amsterdam
      • Athens
      • Berlin
      • Brussels
      • Copenhagen
      • Dusseldorf
      • Frankfurt
      • Helsinki
      • Istanbul
      • Johannesburg
      • Kyiv
      • Lisbon
      • London
      • Madrid
      • Milan
      • Munich
      • Oslo
      • Paris
      • Rome
      • Stockholm
      • Vienna
      • Warsaw
      • Zurich
    • Middle East
      Offices
      Middle East
      • Doha
      • Dubai
      • Riyadh
    • Asia & Australia
      Offices
      Asia & Australia
      • Bangkok
      • Beijing
      • Bengaluru
      • Brisbane
      • Ho Chi Minh City
      • Hong Kong
      • Jakarta
      • Kuala Lumpur
      • Manila
      • Melbourne
      • Mumbai
      • New Delhi
      • Perth
      • Shanghai
      • Singapore
      • Sydney
      • Tokyo
    See all offices
  • Alumni
  • Media Center
  • Subscribe
  • Contact
  • Spain | Español
    Main menu

    Select your region and language

    • Global
      Select your region and language
      Global
      • Global (English)
    • North & Latin America
      Select your region and language
      North & Latin America
      • Brazil (Português)
      • Argentina (Español)
      • Canada (Français)
      • Chile (Español)
      • Colombia (Español)
    • Europe, Middle East, & Africa
      Select your region and language
      Europe, Middle East, & Africa
      • France (Français)
      • DACH Region (Deutsch)
      • Italy (Italiano)
      • Spain (Español)
      • Greece (Elliniká)
    • Asia & Australia
      Select your region and language
      Asia & Australia
      • China (中文版)
      • Korea (한국어)
      • Japan (日本語)
  • Saved items  (0)
    Main menu
    Saved items (0)

    You have no saved items.

    Bookmark content that interests you and it will be saved here for you to read or share later.

    Explore Bain Insights
  • Industries
    • Industries

      • Aeroespacial y Defensa
      • Agroindustria
      • Químicos
      • Construcción e Infraestructura
      • Productos de Consumo
      • Servicios Financieros
      • Salud y Ciencias de la Vida
      • Maquinaria y Equipo Industrial
      • Medios y Entretenimiento
      • Metales
      • Minería
      • Petróleo y Gas
      • Papel y Empaque
      • Private Equity
      • Sector Público y Social
      • Retail
      • Tecnología
      • Telecomunicaciones
      • Transporte
      • Viajes y Turismo
      • Servicios Públicos y Energías Renovables
  • Consulting Services
    • Consulting Services

      • Customer Experience
      • Sustainability
      • Innovation
      • M&A
      • Operations
      • People & Organization
      • Private Equity
      • Sales & Marketing
      • Strategy
      • AI, Insights, and Solutions
      • Technology
      • Transformation
  • Digital
  • Insights
    • Insights

      • Industry Insights
      • Services Insights
      • Bain Books
      • Webinars
      • Bain Futures
      View all Insights
      Featured topics
      • Tariff Response
      • Artificial Intelligence
      • Thriving in Uncertainty
      • Executive Conversations
      • Macro Trends
      • M&A Report
      • Healthcare Private Equity Report
      • Paper & Packaging Report
      • Technology Report
      • CEO's Guide to Sustainability
      • CEO Insights
      • CFO Insights
      • COO Insights
      • CIO Insights
      • CMO Insights
      View all featured topics
  • About
    • About

      • What We Do
      • What We Believe
      • Our People & Leadership
      • Client Results
      • Awards & Recognition
      • Global Affiliations
      Further: Our global responsibility
      • Sustainability
      • Social Impact
      • World Economic Forum
      Learn more about Further
  • Carreras
    Popular Searches
    • Agile
    • Digital
    • Strategy
    Your Previous Searches
      Recently Visited Pages

      Content added to saved items

      Saved items (0)

      Removed from saved items

      Saved items (0)

      Brief

      Three Promises and Perils of Big Data

      Three Promises and Perils of Big Data

      Advanced customer analytics can be a powerful business tool, but companies need to avoid common pitfalls before investing.

      By Eric Almquist, John Senior and Tom Springer

      • min read

      Brief

      Three Promises and Perils of Big Data
      en

      Big Data solution providers make big promises. Just plug your data into our solution, they say. We’ll deliver a stream of insights that enable dramatic improvements in marketing productivity, customer experience quality and service operations efficiency. It’ll be a snap for you and your team; our technology and your data scientists will do all of the heavy lifting.

      Feel like you’ve seen this movie before? If you were caught up in the initial euphoria of the customer relationship management (CRM) revolution, then you did. Starting in the early 1990s, many companies bought into the hype and the technology, only to wind up with unusable databases, rebellious sales teams and depleted capital budgets.

      The CRM industry has since matured, and there is no doubt that CRM solutions can now deliver real value to many organizations. As evidence, CRM was the sixth most popular business tool in Bain’s 2015 Management Tools & Trends survey. And global CRM spending totaled $20.4 billion in 2014, up from $18 billion the previous year, according to Gartner research.

      Yet CRM failure rates remain high. A 2014 report from C5 Insight found that more than 30% of all CRM implementations fail—and second and third CRM implementations at the same companies had only slightly lower failure rates. And this is 20 years into the “revolution”!

      Tom Springer, a partner in Bain's Advanced Analytics practice, discusses how to break through the hype and really benefit from Big Data.

      We see Big Data going down a similar path, making big promises about customer impact and value creation predicated on large investments in technology and expertise. In a recent report, Gartner predicted that “through 2017, 60% of Big Data projects will fail to go beyond piloting and experimentation and will be abandoned.” Why is history repeating itself? It’s not for lack of interest, effort or investment. Instead, it reflects the difficulty of generating value from existing customer, operational and service data—let alone the reams of unstructured, internal and external data generated from social media, mobile devices and online activity.

      Companies are under increasing pressure to harness Big Data and advanced analytics. Customers demand more from the organizations with which they do business. Competition is intensifying, especially in mature industries such as financial services, retail, telecoms and media. Data-driven businesses continue to disrupt the status quo. Disruptors old and new—including Progressive, Capital One, Amazon, Google, Uber and Zappos, to name a few—have created data-driven business models that apply deep insights to deliver tailored products and services that win in the marketplace.

      US auto insurer Progressive, for example, uses plug-in devices to track driver behavior. Progressive mines the data to micro-target its customer base and determine premium pricing. Capital One, an American financial services company, relies heavily on advanced data analytics to shape its customer-risk scoring and loyalty programs. To this end, Capital One exploits multiple types of customer data, including advanced text and voice analytics. Meanwhile, US retail giant Amazon mines customer data intensively to create personalized online shopping experiences. Amazon uses purchase histories and click streams to create a sophisticated recommendation engine that it presents on customized Web pages. On the logistics front, Amazon has also been a leader in applying data analytics to optimize inventory distribution and reduce shipment times.

      Leading users of Big Data set a high bar for success. They have assembled deep benches of analytical talent and created processes that allow their organizations to glean useful insights from advanced analytics. They have built technology platforms that deliver timely data and insights when and where they are needed in the organization. Many have also created cultures of continuous innovation based on rigorous “test and learn” methodologies.

      So how can your company profit from Big Data? The first step is learning how to distinguish the actual potential from the extravagant claims. Much of the ongoing hype rests on three flawed promises: The first is that Big Data technology will identify business opportunities all by itself. The second is that harvesting more data will automatically generate more value. The third is that expert data scientists can help any company profit from Big Data, no matter how that company happens to be organized.

      Below we identify perils associated with each of these three promises, and present examples of companies that have overcome each on the way to creating real value from advanced customer analytics.

      Promise: The technology will identify business opportunities all by itself.

      Peril: Limited return on investment despite large expenditures of money and time.

      Failed technology deployments often start with the assumption that the shiny new tool will generate value all by itself. Companies that successfully harness the power of Big Data solutions tend to start by applying advanced analytics to solve a small number of high-value business problems with in-house data before investing in technology. In the process they learn how to implement solutions organizationally. They also gain insight into operational challenges and come to understand the limitations of their data and technology. They can then define the requirements for their Big Data technology solution based on an understanding of their actual needs (see Figure 1).


      three-promises-and-perils-of-big-data-fig01_embed

      For example, one large insurance company recently focused its data analytics program on fraud. The company was seeing a spike in fraudulent claims, and was incurring significant costs to investigate these claims. The program aimed to reduce fraudulent behavior at lower cost. To this end, the company built a text-mining algorithm that generated fraud propensity scores. This algorithm helped the company achieve a 20% increase in the number of fraudulent scores that it detected. The upshot was fewer cases under investigation and about $30 million in savings. Having proven the value of advanced analytics, the company is now increasing its technology and capability investments.

      Promise: Harvesting more data will automatically generate more value.

      Peril: Overinvestment in unproven data sources and inattention to valuable data sources closer to home.

      The temptation to acquire and mine new data sets has intensified with the explosion of social media and mobile devices. And yet many large organizations are already drowning in data, much of it held in silos where it cannot easily be accessed, organized, linked or interrogated. We’ve found that successful Big Data journeys tend to start by fully exploiting the organization’s existing data.

      From an analytic perspective, it is generally easier to work with data that has some history than it is to attack brand-new data sets. One large US telecom company took just this approach. The company faced increasing competition and wanted to create a program to systematically increase the value of its existing customer base. To achieve this goal, it combined more than 200 data elements from 15 marketing, service and operations databases to create “high definition” portraits of all its customers. The company used these portraits to develop targeted onboarding, cross-selling and customer engagement programs.

      One of its new onboarding programs focused on customers who showed signs of low engagement with the company’s products. The data showed that low engagement was linked to higher customer churn. Instead of sending sales-focused marketing messages to these customers, the company began sending them product awareness and engagement messages that were designed to stimulate product usage. The result: product usage increased, early stage churn declined and more of these customers upgraded their services. In parallel, the company increased its cross-selling marketing to more engaged customers because the data showed that these customers were more likely to upgrade. This resulted in a 2.5-fold increase in cross sales and a far higher return on marketing investment. In total these programs generated many millions in incremental annual revenue.

      This company is now incorporating new data sets that will further enhance its rich customer portraits. To supplement the insights generated by historical data, it is designing experimental marketing campaigns that inject forward-looking variance (e.g., new prices, promotions and offers) into their system.

      Promise: Good data scientists will find value for you.

      Peril: Your existing organization is not ready to realize the value from the data.

      In order to profit consistently from Big Data, you need to create an operating model that harnesses the power of the data and advanced analytics in a repeatable manner. Successful data-driven businesses align their organization, processes, systems and capabilities to make better business decisions based on the insights from their data and analytics teams (see Figure 2).


      three-promises-and-perils-of-big-data-fig02_embed

      One telecom service provider created a partnership model that encompassed its data and analytics teams, its technology division and its frontline functions (including sales, marketing, customer operations and product development). In this model, the business intelligence team, which includes data scientists, statisticians and data miners, partners closely with the business units to solve specific issues by applying advanced analytics to their large internal data sets.

      The business units inject business experience and frontline knowledge into the insights from the data scientists, increasing the odds that their solutions will be pragmatic and scalable. The IT division, which owns the data architecture, figures out how to incorporate new technology such as data lakes, manages the ever-growing data sets and defines the policies and rules that govern them.

      One of the first challenges the telecom company tackled with this new partnership model focused on improving the economics of value-destroying customers. In this instance, the sales and marketing team defined the specific issue for the business intelligence team, who then worked with the IT team to consolidate and merge two years’ worth of customer data from marketing and operational databases to identify the root causes of the value-destroying behaviors. Working together, the three teams defined a set of targeted customer strategies that could turn these value-destroying customers into profitable customers. The result: millions of dollars in incremental revenue.

      Conclusion

      The Big Data revolution has already disrupted many industries. Certain data-driven businesses have captured significant value from this revolution, but many traditional companies are playing catch-up. Technology alone cannot close this gap. Companies that realize the promise of customer data analytics tend to follow three rules:

      1. Prove your organization can apply advanced analytics to solve a few high-value business problems before investing in Big Data technology solutions.
      2. Create value from your in-house data before expanding to new data sources. Then use test-and-learn approaches to inject forward-looking data sets into your historical data.
      3. Align your operating model to enable your organization, particularly the front line, to act quickly and with confidence on the insights from your advanced analytics teams.

      Companies that follow these rules will be better positioned for success in the age of Big Data.

      Eric Almquist is a partner in Bain’s Boston office. He is a leader of the Advanced Analytics practice and a member of the Customer Strategy and Marketing practice. John Senior is a partner in the Sydney office and a leader in the Technology, Telecommunications and Media as well as Customer Strategy and Marketing practices. Tom Springer is a partner in the Boston office and co-leader of the Advanced Analytics practice.


      three-promises-and-perils-of-big-data-fig01_full

      three-promises-and-perils-of-big-data-fig02_full
      Authors
      • Eric Almquist
        Former Advisory Partner, Boston
      • Headshot of John Senior
        John Senior
        Partner, New York
      • Headshot of Tom Springer
        Tom Springer
        Alumni, Boston
      Contact us
      Related Consulting Services
      • AI, Insights, and Solutions
      AI, Insights, and Solutions
      Generando valor a través de Analytics Avanzado

      La clave son las decisiones, no sólo la tecnología.

      Read more
      Enterprise Technology
      Big Data: The Organizational Challenge

      If you don't know who (and where) your chief analytics officer is, you may already be behind the curve.

      Read more
      AI, Insights, and Solutions
      Retailers Have a Secret Weapon in AI-Powered Shopping: Trust

      US consumers would be more comfortable with AI buying on their behalf if a familiar retailer were involved.

      Read more
      AI, Insights, and Solutions
      How AI Is Starting to Transform Circular Packaging

      There are 15 AI use cases companies across the value chain can use today to accelerate circularity.

      Read more
      AI, Insights, and Solutions
      How Life Sciences Leaders Are Widening the AI Capability Gap

      Most pharma and medtech companies agree that a strong data foundation is table stakes. Few invest equally in the behaviors needed to move from pilots to adoption.

      Read more
      First published in abril 2015
      Tags
      • AI, Insights, and Solutions

      How We've Helped Clients

      Advanced Analytics Breakthrough Lets Metals Company Optimize Yield Cost

      Read case study

      Advanced Analytics powers up UtilityCo’s reliability, and customers notice

      Read case study

      Direct marketing excellence through experimental design

      Read case study

      Ready to talk?

      We work with ambitious leaders who want to define the future, not hide from it. Together, we achieve extraordinary outcomes.

      Stay ahead in a rapidly changing world. Subscribe to Bain Insights, our monthly look at the critical issues facing global businesses.

      *I have read and understand Bain’s Privacy Notice.

      Please read and agree to the Privacy Policy.
      Bain & Company
      Contact us Sustainability Accessibility Terms of use Privacy Modern Slavery Act Statement Cookie Policy Sitemap Log In

      © 1996-2026 Bain & Company, Inc.

      Contact Bain

      How can we help you?

      • Business inquiry
      • Career information
      • Press relations
      • Partnership request
      • Speaker request
      See all offices